Urban Air Quality Management at Low Cost Using Micro Air Sensors: A Case Study from Accra, Ghana.

ACS ES&T Air Pub Date : 2024-11-06 eCollection Date: 2025-02-14 DOI:10.1021/acsestair.4c00172
Collins Gameli Hodoli, Iq Mead, Frederic Coulon, Cesunica E Ivey, Victoria Owusu Tawiah, Garima Raheja, James Nimo, Allison Hughes, Achim Haug, Anika Krause, Selina Amoah, Maxwell Sunu, John K Nyante, Esi Nerquaye Tetteh, Véronique Riffault, Carl Malings
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Abstract

Urban air quality management is dependent on the availability of local air pollution data. In many major urban centers of Africa, there is limited to nonexistent information on air quality. This is gradually changing in part due to the increasing use of micro air sensors, which have the potential to enable the generation of ground-based air quality data at fine scales for understanding local emission trends. Regional literature on the application of high-resolution data for emission source identification in this region is limited. In this study a micro air sensor was colocated at the Physics Department, University of Ghana, with a reference grade instrument to evaluate its performance for estimating PM2.5 pollution accurately at fine scales and the value of these data in identification of local sources and their behavior over time. For this study, 15 weeks of data at hourly resolution with approximately 2500 data pairs were generated and analyzed (June 1, 2023, to September 15, 2023). For this time period a coefficient of determination (r 2) of 0.83 was generated with a mean absolute error (MAE) of 5.44 μg m-3 between the pre local calibration micro air sensor (i.e., out of the box) and the reference-grade instrument. Following currently accepted best practice methods (see, e.g., PAS4023) a domain specific (i.e., local) calibration factor was generated using a multilinear regression model, and when this factor is applied to the micro air sensor data, a reduction, i.e. improvement, in MAE to 1.43 μg m-3 was found. Daily variation was calculated, a receptor model was applied, and time series plots as a function of wind direction were generated, including PM2.5/PM10 ratio scatter and count plots, to explore the utility of this observational approach for local source identification. The 3 data sets were compared (out of the box, domain calibrated, and reference-grade) and it was found that although there were variations in the data reported, source areas highlighted based on these data were similar, with input from local sources such as traffic emissions and biomass burning. As the temporal resolution of observational data associated with these micro air sensors is higher than for reference grade instruments (primarily due to costs and logistics limitations), they have the potential to provide insight into the complex, often hyperlocalized sources associated with urban areas, such as those found in major African cities.

使用微型空气传感器低成本管理城市空气质量:加纳阿克拉案例研究》。
城市空气质量管理取决于当地空气污染数据的可用性。在非洲的许多主要城市中心,关于空气质量的信息有限,几乎不存在。这种情况正在逐渐改变,部分原因是微型空气传感器的使用越来越多,微型空气传感器有可能生成精细尺度的地面空气质量数据,以了解当地的排放趋势。关于高分辨率数据在该地区应用于排放源识别的区域文献有限。在本研究中,加纳大学物理系安装了一个微型空气传感器,并配备了一个参考级仪器,以评估其在精细尺度上准确估计PM2.5污染的性能,以及这些数据在识别当地污染源及其随时间变化的价值。在本研究中,生成并分析了15周的每小时分辨率的数据,大约有2500对数据对(2023年6月1日至2023年9月15日)。在此时间段内,预本地校准微型空气传感器(即开箱即用)与参考级仪器之间的决定系数(r2)为0.83,平均绝对误差(MAE)为5.44 μg m-3。根据目前公认的最佳实践方法(例如PAS4023),使用多元线性回归模型生成特定域(即局部)校准因子,当将该因子应用于微空气传感器数据时,发现MAE减少,即改善至1.43 μg m-3。计算日变化,应用受体模型,生成风向函数的时间序列图,包括PM2.5/PM10比值散点图和计数图,以探索该观测方法在局部源识别中的实用性。对3个数据集进行了比较(开箱即用、领域校准和参考等级),发现尽管报告的数据存在差异,但基于这些数据突出显示的源区域是相似的,输入来自交通排放和生物质燃烧等本地源。由于与这些微型空气传感器相关的观测数据的时间分辨率高于参考级仪器(主要是由于成本和物流限制),因此它们有可能深入了解与城市地区有关的复杂的、通常是超局部化的来源,例如在非洲主要城市发现的来源。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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